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Learning Latent Causal Dynamics

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arxiv 2202.04828 v4 pith:VAL26OIA submitted 2022-02-10 stat.ML cs.AIcs.LG

Learning Latent Causal Dynamics

classification stat.ML cs.AIcs.LG
keywords causaldistributionunderchangeslatentdynamicsshiftsunknown
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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One critical challenge of time-series modeling is how to learn and quickly correct the model under unknown distribution shifts. In this work, we propose a principled framework, called LiLY, to first recover time-delayed latent causal variables and identify their relations from measured temporal data under different distribution shifts. The correction step is then formulated as learning the low-dimensional change factors with a few samples from the new environment, leveraging the identified causal structure. Specifically, the framework factorizes unknown distribution shifts into transition distribution changes caused by fixed dynamics and time-varying latent causal relations, and by global changes in observation. We establish the identifiability theories of nonparametric latent causal dynamics from their nonlinear mixtures under fixed dynamics and under changes. Through experiments, we show that time-delayed latent causal influences are reliably identified from observed variables under different distribution changes. By exploiting this modular representation of changes, we can efficiently learn to correct the model under unknown distribution shifts with only a few samples.

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